Published May 31, 2021
Buy AND Build for Production Machine Learning with Nir Bar-Lev - #488
Nir Bar-Lev delves into the complexities of federated learning, MLOps evolution, and experiment management, sharing insights on balancing engineering with data science, the buy vs build debate, and managing wide versus deep machine learning platforms. As MLOps grows, he addresses integration challenges and strategic solutions essential for future success.

Topics covered
Popular Clips
Episode Highlights
Related Episodes


Automated Machine Learning with Erez Barak - #323
Answers 383 questions

Real-Time Machine Learning in the Database with Nikita Shamgunov - #84
Answers 383 questions

Applied Machine Learning for Publishers with Naveed Ahmad - TWiML Talk #182
Answers 383 questions

Machine Learning as a Software Engineering Discipline with Dillon Erb - #404
Answers 383 questions

Real-Time ML Workflows at Capital One with Disha Singla - 606
Answers 383 questions

Feature Platforms for Data-Centric AI with Mike Del Balso - #577
Answers 383 questions

Machine Learning Platforms at Uber with Mike Del Balso - #115
Answers 383 questions

Building LLM-Based Applications with Azure OpenAI with Jay Emery - 657
Answers 383 questions

Scaling Enterprise ML in 2020: Still Hard! with Sushil Thomas - #429
Answers 383 questions

Productive Machine Learning at LinkedIn with Bee-Chung Chen - TWiML Talk #200
Answers 383 questions

Web Scale Engineering for Machine Learning with Sharath Rao - #40
Answers 383 questions

How to Build Confidence as an ML Developer with Siraj Raval - #2
Answers 383 questions

Building Real-World LLM Products with Fine-Tuning and More with Hamel Husain - 694
Answers 383 questions













